International audienceMotivation: Biomarker discovery from high-dimensional data is a crucial problem with enormous applications in biology and medicine. It is also extremely challenging from a statistical viewpoint, but surprisingly few studies have investigated the relative strengths and weaknesses of the plethora of existing feature selection methods. Methods: We compare 32 feature selection methods on 4 public gene expression datasets for breast cancer prognosis, in terms of predictive performance, stability and functional interpretability of the signatures they produce. Results: We observe that the feature selection method has a significant influence on the accuracy, stability and interpretability of signatures. Simple filter methods g...
The identification of biomarker signatures in omics molecular profiling is usually performed to pred...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
International audienceFinding reliable, meaningful patterns in data with high numbers of attributes ...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Abstract Background Our goal was to examine how various aspects of a gene signature influence the su...
De considérables développements dans le domaine des biotechnologies ont modifié notre approche de l'...
Copyright © 2013 Nicoletta Dess̀ı et al.This is an open access article distributed under the Creativ...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Ensemble feature selection has been recently explored as a promising paradigm to improve the stabili...
Motivation : Molecular signatures for diagnosis or prognosis estimated from large-scale gene express...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Introduction: As part of the MicroArray Quality Control (MAQC)-II project, this analysis examines ho...
The identification of biomarker signatures in omics molecular profiling is usually performed to pred...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
International audienceFinding reliable, meaningful patterns in data with high numbers of attributes ...
A major area of research is biomarker discovery using gene expression data. Such data is huge and of...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Feature selection has become the essential step in biomarker discovery from high-dimensional genomic...
Abstract Background Our goal was to examine how various aspects of a gene signature influence the su...
De considérables développements dans le domaine des biotechnologies ont modifié notre approche de l'...
Copyright © 2013 Nicoletta Dess̀ı et al.This is an open access article distributed under the Creativ...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Ensemble feature selection has been recently explored as a promising paradigm to improve the stabili...
Motivation : Molecular signatures for diagnosis or prognosis estimated from large-scale gene express...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Motivation: Biomarker discovery is an important topic in biomedical applications of computational bi...
Introduction: As part of the MicroArray Quality Control (MAQC)-II project, this analysis examines ho...
The identification of biomarker signatures in omics molecular profiling is usually performed to pred...
Motivation: Univariate statistical tests are widely used for biomarker discovery in bioinformatics. ...
International audienceFinding reliable, meaningful patterns in data with high numbers of attributes ...